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Assembly Sequence Planning Using Artificial Neural Networks for Mechanical Parts Based on Selected Criteria

Marcin Suszyński, Katarzyna Peta

2021Applied Sciences23 citationsDOIOpen Access PDF

Abstract

The proposed model of the neural network describes the task of planning the assembly sequence on the basis of predicting the optimal assembly time of mechanical parts. In the proposed neural approach, the k-means clustering algorithm is used. In order to find the most effective network, 10,000 network models were made using various training methods, including the steepest descent method, the conjugate gradients method, and Broyden–Fletcher–Goldfarb–Shanno algorithm. Changes to network parameters also included the following activation functions: linear, logistic, tanh, exponential, and sine. The simulation results suggest that the neural predictor would be used as a predictor for the assembly sequence planning system. This paper discusses a new modeling scheme known as artificial neural networks, taking into account selected criteria for the evaluation of assembly sequences based on data that can be automatically downloaded from CAx systems.

Topics & Concepts

Artificial neural networkComputer scienceConjugate gradient methodGradient descentSequence (biology)Artificial intelligenceAlgorithmBiologyGeneticsManufacturing Process and OptimizationEngineering Technology and MethodologiesAdvanced machining processes and optimization